基于群智能和人工神经网络的股票市场日价格优化研究

P. K. Bharne, S. Prabhune
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引用次数: 8

摘要

群智能(SI)是一种功能强大的新兴领域,属于人工智能领域。SI的灵感来自于生物实体的行为,如蜜蜂、萤火虫、蝙蝠、布谷鸟、蚂蚁等。SI的基本思想是,智能体在有限规则下的集体行为。近年来,SI被应用于各种各样的应用中,包括适当的股票市场价格变动。本文对SI在股票市场中的应用进行了综述。本文首先详细介绍了股票市场、指数及其各种类型的算法,最后介绍了一些最近基于指数算法的股票市场预测方法。从这次调查中,我们发现为了提高SI的效率并优化结果,SI与其他方法如人工神经网络(ANN),机器学习ML等相结合。我们发现SI和ANN的组合比SI和机器学习的组合产生更准确和优化的股票价格预测结果。最后,文章对最近的技术进行了比较分析,包括所使用的一种SI,与SI相结合的算法,比较算法,用于性能评估的数据集,每种技术的优势和未来趋势。未来的趋势将用于SI和股票市场应用领域的进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Survey on combined swarm intelligence and ANN for optimized daily stock market price
Swarm intelligence (SI) is powerful, newly emerged domain belongs to the field of Artificial Intelligence. The SI is inspired from the behavior of biological entities such as honey bee, fireflies, bat, cuckoo, ant etc. The basic idea of SI is that, the collective behavior of agents with a very limited set of rules. In recent SI is applied in various kind of application including appropriate stock market price movement. This paper makes survey of the use of SI in a stock market application. The paper initially describes the details of a stock market, SI and its various types of algorithm and finally describes some recent SI algorithm based approaches for stock market prediction. From this survey, we found that to improve the efficiency of SI and make optimized results, SI is combined with other approaches like Artificial Neural Network (ANN), Machine Learning ML etc. We found that the combination of SI and ANN produce more accurate and optimized results for stock price prediction than the combination of SI and machine learning. Finally paper provides the comparative analysis of recent techniques on the basis of a type of SI used, the algorithm with which SI is combined, comparable algorithm, the dataset used for performance evaluation, its advantages and future trend for each technique. Future trend will be used for further research in the field of SI and stock market applications.
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